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- #include "cpu_types.hpp"
- namespace {
- template <typename scalar_t>
- void rotary_embedding_impl(
- const int64_t
- *__restrict__ positions, // [batch_size, seq_len] or [num_tokens]
- scalar_t
- *__restrict__ query, /// [batch_size, seq_len, num_heads, head_size] or
- /// [num_tokens, num_heads, head_size]
- scalar_t
- *__restrict__ key, // [batch_size, seq_len, num_kv_heads, head_size] or
- // [num_tokens, num_kv_heads, head_size]
- const scalar_t
- *__restrict__ cos_sin_cache, // [max_position, 2, rot_dim // 2]
- const int rot_dim, const int64_t query_stride, const int64_t key_stride,
- const int num_heads, const int num_kv_heads, const int head_size,
- const int num_tokens) {
- using scalar_vec_t = vec_op::vec_t<scalar_t>;
- constexpr int VEC_ELEM_NUM = scalar_vec_t::get_elem_num();
- constexpr int ELEM_SIZE = sizeof(scalar_t);
- const int embed_dim = rot_dim / 2;
- TORCH_CHECK(embed_dim % VEC_ELEM_NUM == 0);
- #pragma omp parallel for
- for (int token_idx = 0; token_idx < num_tokens; ++token_idx) {
- int64_t pos = positions[token_idx];
- const scalar_t *cache_ptr = cos_sin_cache + pos * rot_dim;
- for (int i = 0; i < num_heads; ++i) {
- const int head_idx = i;
- const int64_t token_head =
- token_idx * query_stride + head_idx * head_size;
- for (int j = 0; j < embed_dim; j += VEC_ELEM_NUM) {
- const int rot_offset = j;
- const int x_index = rot_offset;
- const int y_index = embed_dim + rot_offset;
- const int64_t out_x = token_head + x_index;
- const int64_t out_y = token_head + y_index;
- const scalar_vec_t cos(cache_ptr + x_index);
- const scalar_vec_t sin(cache_ptr + y_index);
- const scalar_vec_t q_x(query + out_x);
- const scalar_vec_t q_y(query + out_y);
- vec_op::FP32Vec8 fp32_cos(cos);
- vec_op::FP32Vec8 fp32_sin(sin);
- vec_op::FP32Vec8 fp32_q_x(q_x);
- vec_op::FP32Vec8 fp32_q_y(q_y);
- auto out1 = fp32_q_x * fp32_cos - fp32_q_y * fp32_sin;
- scalar_vec_t(out1).save(query + out_x);
- auto out2 = fp32_q_y * fp32_cos + fp32_q_x * fp32_sin;
- scalar_vec_t(out2).save(query + out_y);
- }
- }
- for (int i = 0; i < num_kv_heads; ++i) {
- const int head_idx = i;
- const int64_t token_head = token_idx * key_stride + head_idx * head_size;
- for (int j = 0; j < embed_dim; j += VEC_ELEM_NUM) {
- const int rot_offset = j;
- const int x_index = rot_offset;
- const int y_index = embed_dim + rot_offset;
- const int64_t out_x = token_head + x_index;
- const int64_t out_y = token_head + y_index;
- const scalar_vec_t cos(cache_ptr + x_index);
- const scalar_vec_t sin(cache_ptr + y_index);
- const scalar_vec_t k_x(key + out_x);
- const scalar_vec_t k_y(key + out_y);
- vec_op::FP32Vec8 fp32_cos(cos);
- vec_op::FP32Vec8 fp32_sin(sin);
- vec_op::FP32Vec8 fp32_k_x(k_x);
- vec_op::FP32Vec8 fp32_k_y(k_y);
- auto out1 = fp32_k_x * fp32_cos - fp32_k_y * fp32_sin;
- scalar_vec_t(out1).save(key + out_x);
- auto out2 = fp32_k_y * fp32_cos + fp32_k_x * fp32_sin;
- scalar_vec_t(out2).save(key + out_y);
- }
- }
- }
- }
- template <typename scalar_t>
- void rotary_embedding_gptj_impl(
- const int64_t
- *__restrict__ positions, // [batch_size, seq_len] or [num_tokens]
- scalar_t
- *__restrict__ query, /// [batch_size, seq_len, num_heads, head_size] or
- /// [num_tokens, num_heads, head_size]
- scalar_t
- *__restrict__ key, // [batch_size, seq_len, num_kv_heads, head_size] or
- // [num_tokens, num_kv_heads, head_size]
- const scalar_t
- *__restrict__ cos_sin_cache, // [max_position, 2, rot_dim // 2]
- const int rot_dim, const int64_t query_stride, const int64_t key_stride,
- const int num_heads, const int num_kv_heads, const int head_size,
- const int num_tokens) {
- const int embed_dim = rot_dim / 2;
- #pragma omp parallel for collapse(2)
- for (int token_idx = 0; token_idx < num_tokens; ++token_idx) {
- for (int i = 0; i < num_heads; ++i) {
- int64_t pos = positions[token_idx];
- const scalar_t *cache_ptr = cos_sin_cache + pos * rot_dim;
- const scalar_t *cos_cache_ptr = cache_ptr;
- const scalar_t *sin_cache_ptr = cache_ptr + embed_dim;
- const int head_idx = i;
- const int64_t token_head =
- token_idx * query_stride + head_idx * head_size;
- scalar_t *head_query = token_head + query;
- for (int j = 0; j < embed_dim; j += 1) {
- const int rot_offset = j;
- const int x_index = 2 * rot_offset;
- const int y_index = 2 * rot_offset + 1;
- const float cos = cos_cache_ptr[rot_offset];
- const float sin = sin_cache_ptr[rot_offset];
- const float x = head_query[x_index];
- const float y = head_query[y_index];
- head_query[x_index] = x * cos - y * sin;
- head_query[y_index] = y * cos + x * sin;
- }
- }
- }
- #pragma omp parallel for collapse(2)
- for (int token_idx = 0; token_idx < num_tokens; ++token_idx) {
- for (int i = 0; i < num_kv_heads; ++i) {
- int64_t pos = positions[token_idx];
- const scalar_t *cache_ptr = cos_sin_cache + pos * rot_dim;
- const scalar_t *cos_cache_ptr = cache_ptr;
- const scalar_t *sin_cache_ptr = cache_ptr + embed_dim;
- const int head_idx = i;
- const int64_t token_head = token_idx * key_stride + head_idx * head_size;
- scalar_t *head_key = key + token_head;
- for (int j = 0; j < embed_dim; j += 1) {
- const int rot_offset = j;
- const int x_index = 2 * rot_offset;
- const int y_index = 2 * rot_offset + 1;
- const float cos = cos_cache_ptr[rot_offset];
- const float sin = sin_cache_ptr[rot_offset];
- const float x = head_key[x_index];
- const float y = head_key[y_index];
- head_key[x_index] = x * cos - y * sin;
- head_key[y_index] = y * cos + x * sin;
- }
- }
- }
- }
- }; // namespace
- void rotary_embedding(torch::Tensor &positions, torch::Tensor &query,
- torch::Tensor &key, int head_size,
- torch::Tensor &cos_sin_cache, bool is_neox) {
- int num_tokens = query.numel() / query.size(-1);
- int rot_dim = cos_sin_cache.size(1);
- int num_heads = query.size(-1) / head_size;
- int num_kv_heads = key.size(-1) / head_size;
- int64_t key_stride = key.stride(-2);
- int64_t query_stride = query.stride(-2);
- APHRODITE_DISPATCH_FLOATING_TYPES(
- query.scalar_type(), "rotary_embedding_impl", [&] {
- CPU_KERNEL_GUARD_IN(rotary_embedding_impl)
- if (is_neox) {
- rotary_embedding_impl(
- positions.data_ptr<int64_t>(), query.data_ptr<scalar_t>(),
- key.data_ptr<scalar_t>(), cos_sin_cache.data_ptr<scalar_t>(),
- rot_dim, query_stride, key_stride, num_heads, num_kv_heads,
- head_size, num_tokens);
- } else {
- rotary_embedding_gptj_impl(
- positions.data_ptr<int64_t>(), query.data_ptr<scalar_t>(),
- key.data_ptr<scalar_t>(), cos_sin_cache.data_ptr<scalar_t>(),
- rot_dim, query_stride, key_stride, num_heads, num_kv_heads,
- head_size, num_tokens);
- }
- CPU_KERNEL_GUARD_OUT(rotary_embedding_impl)
- });
- }
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